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Publication Years
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Category
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28
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Toolboxes
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5
2
National Tuberculosis Programme
The National Strategic Plan (NSP) for Tuberculosis (TB) 2016-2020 builds on the past experiences for the National Tuberculosis Programme and its partners. This NSP provides a roadmap for delivering quality TB prevention and care service to the entire population, ... as an integral part of the country's move toward Universal Health Coverage. Between 1990 and 2015, Myanmar reduced the prevalence of TB by 50%, meeting the targets set by the Millennium Development Goals. Going forward, the country aims to further accelerate the rate decline. more
The National Strategic Plan (NSP) for Tuberculosis (TB) 2016-2020 builds on the past experiences for the National Tuberculosis Programme and its partners. This NSP provides a roadmap for delivering quality TB prevention and care service to the entire population, ... as an integral part of the country's move toward Universal Health Coverage. Between 1990 and 2015, Myanmar reduced the prevalence of TB by 50%, meeting the targets set by the Millennium Development Goals. Going forward, the country aims to further accelerate the rate decline. more
Following the encouraging initial results of the pilot project, the Ministry of Health is committed to increasing access to MDR-TB diagnosis, treatment and care. An expansion plan for the programmatic management of drug-resistant TB has been developed and forms part of the Five Year National Strateg
...
ic Plan for TB Control, 2011-2015. The long-term goals of the MDR-TB expansion plan are threefold:
1. Diagnosis of MDR-TB in all groups of patients at risk for MDR-TB
2. Diagnosis of MDR-TB in all HIV-infected TB patients
3. MDR-TB treatment for all patients diagnosed with MDR-TB under WHO-endorsed treatment protocols more
1. Diagnosis of MDR-TB in all groups of patients at risk for MDR-TB
2. Diagnosis of MDR-TB in all HIV-infected TB patients
3. MDR-TB treatment for all patients diagnosed with MDR-TB under WHO-endorsed treatment protocols more
The Indonesian government has reformed its laws, policies, and institutions to better manage disaster risk since the significant 2004 Indian Ocean Tsunami. The Government of Indonesia now has contingency plans for every disaster-prone city which identifies its vulnerabilities, outlines the relief re
...
sponse, and builds overall preparedness. In 2007, the government introduced a disaster management bill that incorporated disaster management prevention into disaster management response. In 2008, Indonesia created the National Disaster Management Agency (Badan Nasional Penanggulangan Bencana, BNPB). The new shift led to the strengthening of the country’s disaster management agency, and the addition of district branches and representatives. Despite the progress made, more work is needed at the local level as well as integration of disaster risk reduction in government departments.11 Under Indonesia’s 2007 Disaster Management law, provincial and district administrations are mandated to head disaster management during a crisis.
more
Myanmar has made significant progress in its disaster management policies, plans, and procedures since 2008, when Cyclone Nargis impacted the country leaving devastation in its aftermath. The Government of Myanmar (GoM) has modified the government structure and created new authorities and plans to i
...
mprove the effectiveness of disaster management at all levels. While this progress is encouraging and shows the determination of the government to make necessary adjustments, the resources to implement the policy changes have been slower to develop. Myanmar has made significant progress in its disaster management policies, plans, and procedures since 2008, when Cyclone Nargis impacted the country leaving devastation in its aftermath. The Government of Myanmar (GoM) has modified the government structure and created new authorities and plans to improve the effectiveness of disaster management at all levels. While this progress is encouraging and shows the determination of the government to make necessary adjustments, the resources to implement the policy changes have been slower to develop.
more
Recently, Sri Lanka has been impacted by multiple natural disasters. Sri Lanka experienced a landslide in October 2014, and flooding in December 2014.8 Sri Lanka withstood the worst drought conditions witnessed in four decades in 2016; the extreme drought conditions extended into 2017 and produced s
...
ubstantial economic and social effects. The drought was responsible for an increase in national poverty levels, due to reduced cultivation income, especially for rural farmers. ... In May 2017, Sri Lanka experienced continuous rains causing flash floods and extreme devastation. However, despite natural disasters and challenges posed by a complex political environment, Sri Lanka’s financial performance remained largely satisfactory in the first half of 2017.
more
The Philippine Government, International Non-government Organizations (INGOs) and local NGOs are all making attempts to address the impact of disasters and climate change at various levels. The Philippine Government has made significant strides in the implementation of disaster risk reduction (DRR)
...
planning and activities through the development of the National Disaster Risk Reduction and Management Council (NDRRMC) which acts as the lead agency for DRR in the Philippines. The disaster focal points are the NDRRMC and the Office of Civil Defence (OCD). The Department of Social Welfare and Development (DSWD) is responsible for leading immediate disaster relief efforts.
The Armed Forces of the Philippines (AFP) is a primary responder in disasters and have been deployed frequently to several disaster relief operations in the country in recent years. The Philippines has endured disasters that involve national and international assistance. more
The Armed Forces of the Philippines (AFP) is a primary responder in disasters and have been deployed frequently to several disaster relief operations in the country in recent years. The Philippines has endured disasters that involve national and international assistance. more
Cambodia drafted and adopted the National Action Plan for Disaster Risk Reduction 2014-2018 in 2014. This plan finalized the required policies and legal processes to strengthen DRM in Cambodia. It also focused on capacity building at national and sub-national levels and provided dedicated resources
...
for strengthening the NCDM and the Sub-National Committees for Disaster Management. Cambodia’s legislature then passed the Law on Disaster Management in June 2015. This legal framework for disaster management assigns legally binding roles and responsibilities, establishes institutions, and assists with the allocation of resources and coordination. NCDM is Cambodia’s lead government agency for emergency preparedness and relief. The NCDM provides the overall leadership of the Plan of Action for Disaster Risk Reduction (DRR) coordination in Cambodia. Cambodia has adopted the Cambodia Red Cross (CRC) as the primary partner for relief operations.
more
The 2012 NDRMP lays out the Disaster Risk Management (DRM) architecture of the country and provides guidance for DRM intervention at all levels. However, implementation has been slow and resource challenges exist throughout the government.
The PNG government’s policy and institutional framework ... for DRM still faces numerous obstacles. The main challenges in moving towards a more proactive and systematic approach to manage risks and build resilience include 1.) the limited coordination between DRM and Climate Change Adaptation agencies; 2.) the slow migration from emphasis on response to risk reduction and management; 3.) the limited institutional capacity for planning and design of risk informed investments; and 4.) the lack of available historic natural hazard data, which hinders the assessment of risks. more
The PNG government’s policy and institutional framework ... for DRM still faces numerous obstacles. The main challenges in moving towards a more proactive and systematic approach to manage risks and build resilience include 1.) the limited coordination between DRM and Climate Change Adaptation agencies; 2.) the slow migration from emphasis on response to risk reduction and management; 3.) the limited institutional capacity for planning and design of risk informed investments; and 4.) the lack of available historic natural hazard data, which hinders the assessment of risks. more
Specific measures are being taken within the National Tuberculosis Control Programme (NTP) to address the MDR TB problem through appropriate management of patients and strategies to prevent the propagation and dissemination of MDR TB.
The term "Programmatic Management of Drug Resistant TB" (PMD ... T) refers to programme based MDR TB diagnosis, management and treatment. This guideline promotes full integration of basic TB control and PMDT activities under the NTP, so that patients with TB are evaluated for drug resistance and are placed on the appropriate treatment regimen and properly managed from the outset of treatment, or as early as possible. The guidelines also integrate the identification and treatment of more severe forms of drug resistance, such as extensively drug resistant TB (XDR TB).
At the end, the guideline introduces new standards for registering, monitoring and reporting outcomes of multidrug resistant TB cases. more
The term "Programmatic Management of Drug Resistant TB" (PMD ... T) refers to programme based MDR TB diagnosis, management and treatment. This guideline promotes full integration of basic TB control and PMDT activities under the NTP, so that patients with TB are evaluated for drug resistance and are placed on the appropriate treatment regimen and properly managed from the outset of treatment, or as early as possible. The guidelines also integrate the identification and treatment of more severe forms of drug resistance, such as extensively drug resistant TB (XDR TB).
At the end, the guideline introduces new standards for registering, monitoring and reporting outcomes of multidrug resistant TB cases. more
Over the period 2015 to 2019, scaling up a package of selected nutrition-specific and nutrition sensitive interventions to cover 90 per cent of Sudan would:
- Reduce the under-five mortality rate to 49/1,000 live births
- Reduce the prevalence of stunting to 25 per cent
- Reduce the ... prevalence of wasting (global acute malnutrition – GAM) to 6 per cent
- Increase exclusive breastfeeding to 63 per cent
- Reduce iron deficiency anaemia among pregnant women to 26 per cent. more
- Reduce the under-five mortality rate to 49/1,000 live births
- Reduce the prevalence of stunting to 25 per cent
- Reduce the ... prevalence of wasting (global acute malnutrition – GAM) to 6 per cent
- Increase exclusive breastfeeding to 63 per cent
- Reduce iron deficiency anaemia among pregnant women to 26 per cent. more
The survey is representative of the Union Territory, its states and regions and urban and rural areas. It was conducted in all the districts and in 296 of the 330 townships of Myanmar. A total of 13,730 households were interviewed. It collects data on the occupations of people, how much income they
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earn, and how they use this to meet the food, housing, health, education and other needs of their families. The main focus of the survey is to produce estimates of poverty and living conditions, to provide core data inputs into the System of National Accounts and the Consumer Price Index and to support monitoring of the Sustainable Development Goals.
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The Socio-Economic Impact of People Living with HIV at the Household Level in Myanmar
Cercone, James; Pinder, Étoile; Pothuis, Michal et al.
The Republic of the Union of Myanmar, Ministry of Health and Sports; UNDP
(2016)
C1
The study collected data on the impact of HIV-related diseases on income, revenues, economic dependency, consumption, education, health, food security, stigma, discrimination, quality of life, and migration. The study also assessed people living with chronic diseases in order to compare the impact o
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f living with HIV/AIDS with the impact of living with a chronic disease.
Stigma, discrimination, and socio-economic exclusion continue to affect the rights and socio-economic opportunities of people living with HIV in Myanmar. Households with a family member who has HIV, have lower incomes, fewer assets and lower home-ownership, compared to households that are not affected by HIV. They also have more household debt, and their families pay a higher rate of interest compared to families not affected by HIV. more
Stigma, discrimination, and socio-economic exclusion continue to affect the rights and socio-economic opportunities of people living with HIV in Myanmar. Households with a family member who has HIV, have lower incomes, fewer assets and lower home-ownership, compared to households that are not affected by HIV. They also have more household debt, and their families pay a higher rate of interest compared to families not affected by HIV. more
No publication year indicated
Based on the Vulnerability Index developed in this review, an estimated 22.7 million persons in Myanmar, or 44% of the population, were found to have some form of vulnerability related to human development and/or exposure to active conflict/violence. These people experience varying combinations of p
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oor housing, lack of education, poor educational attainment, lack of access to safe sanitation and improved drinking water, and direct exposure to conflict.
Shan and Ayeyarwady have the largest populations of vulnerable persons, a function of both their size and relative vulnerability in comparison to other States and Regions. Yangon and Shan show the widest variation in vulnerability across townships (in terms of the number of vulnerable persons and their level of vulnerability), followed by Mandalay, Chin and Rakhine.
Original file: 15 MB more
Shan and Ayeyarwady have the largest populations of vulnerable persons, a function of both their size and relative vulnerability in comparison to other States and Regions. Yangon and Shan show the widest variation in vulnerability across townships (in terms of the number of vulnerable persons and their level of vulnerability), followed by Mandalay, Chin and Rakhine.
Original file: 15 MB more
Indonesia Health Profile 2015
The purpose of this study was to document a technical assessment of a sample of these existing shelters on their functionality, accessibility, operation and management, community perspectives in Myanmar; identify gaps, needs and further the linkages with community-based disaster risk reduction (CDBR
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R) activities. The study also aims at a wider assessment: looking at broader recovery in terms of shelter and livelihood aspects with clear linkages and strategic direction for future cyclone shelter support activities.
No publication year indicated. more
No publication year indicated. more
This study aims to analyze national and international stakeholders and their initiatives in Early Warning Systems in Myanmar, to identify priority gaps that need to be addressed by all stakeholders. It is presented as a first step towards supporting GoUM in information-gathering under the Myanmar Ac
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tion Plan for Disaster Risk Reduction (MAPDRR), in particular under Components (2) Risk Assessment, (3) Multi-hazard Early Warning System and (4) Preparedness at all levels, and especially in implementing Sub-Component (3.4) Enhanced Flood Monitoring and Forecasting Capacities at Township Levels.
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